Skip to content

Instantly share code, notes, and snippets.

@Lakens
Created August 29, 2020 07:49
Show Gist options
  • Star 0 You must be signed in to star a gist
  • Fork 0 You must be signed in to fork a gist
  • Save Lakens/68ff55b4ab8b710cca129b5f5a11d501 to your computer and use it in GitHub Desktop.
Save Lakens/68ff55b4ab8b710cca129b5f5a11d501 to your computer and use it in GitHub Desktop.
Segmented vs. Sequential Analyses
library(segHT)
library(rpact)
looks <- 3
n_seg <- 50
alpha_level <- 0.05
true_d <- 0.5 # can not enter 0, segmented_hyp_test_outcomes gives error
###############################
# Segmented procedure ----
expected_summary <- segmented_hyp_test_outcomes(
max_n_segments = looks,
n_per_segment = n_seg,
alpha_total = alpha_level,
alpha_strong = 0.025,
stat_procedure_name = "2t",
effect_size = true_d,
base_rate = 1
)
# Reproduces Figure 2B
expected_summary$pr_reject_by_segment
expected_summary$pr_ftr_by_segment
#######################################################
# Pocock spending function, stopping for futility ----
seq_design <- getDesignGroupSequential(
kMax = looks,
typeOfDesign = "asP",
typeBetaSpending="bsP",
alpha = alpha_level
)
sample_res <- getPowerMeans(
design = seq_design,
alternative = c(0, true_d),
stDev = 1,
maxNumberOfSubjects = n_seg*looks)
plot(sample_res, type = 6)
# power sequential
sample_res$overallReject
# power segmented
expected_summary$avg_power
# sample size sequential
sample_res$expectedNumberOfSubjects
# sample size segmented
expected_summary$exp_n_subj
##########################################
# Compared to not stopping for futility ----
seq_design <- getDesignGroupSequential(
kMax = looks,
typeOfDesign = "asP",
alpha = alpha_level,
beta = 0.2
)
sample_res <- getPowerMeans(
design = seq_design,
groups = 2,
alternative = true_d,
stDev = 1,
allocationRatioPlanned = 1,
maxNumberOfSubjects = n_seg*looks,
normalApproximation = FALSE)
# power sequential
sample_res$overallReject
# power segmented
expected_summary$avg_power
# sample size sequential
sample_res$expectedNumberOfSubjects
# sample size segmented
expected_summary$exp_n_subj
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment